parent
20fb147c9a
commit
ca3913d1f8
|
@ -28045,3 +28045,34 @@ Application Program Interfaces (API)}.")
|
|||
"Imports plain-text ASC data files from EyeLink eye trackers into
|
||||
(relatively) tidy data frames for analysis and visualization.")
|
||||
(license license:gpl3)))
|
||||
|
||||
(define-public r-btm
|
||||
(package
|
||||
(name "r-btm")
|
||||
(version "0.3.5")
|
||||
(source
|
||||
(origin
|
||||
(method url-fetch)
|
||||
(uri (cran-uri "BTM" version))
|
||||
(sha256
|
||||
(base32
|
||||
"1x6bncb7r97z8bdyxnn2frdi9kyawfy6c2041mv9f42zdrfzm6jb"))))
|
||||
(properties `((upstream-name . "BTM")))
|
||||
(build-system r-build-system)
|
||||
(propagated-inputs `(("r-rcpp" ,r-rcpp)))
|
||||
(home-page "https://github.com/bnosac/BTM")
|
||||
(synopsis "Biterm Topic Models for Short Text")
|
||||
(description
|
||||
"Biterm Topic Models find topics in collections of short texts. It is a
|
||||
word co-occurrence based topic model that learns topics by modeling word-word
|
||||
co-occurrences patterns which are called biterms. This in contrast to
|
||||
traditional topic models like Latent Dirichlet Allocation and Probabilistic
|
||||
Latent Semantic Analysis which are word-document co-occurrence topic models. A
|
||||
biterm consists of two words co-occurring in the same short text window. This
|
||||
context window can for example be a twitter message, a short answer on a
|
||||
survey, a sentence of a text or a document identifier. The techniques are
|
||||
explained in detail in the paper 'A Biterm Topic Model For Short Text' by
|
||||
Xiaohui Yan, Jiafeng Guo, Yanyan Lan, Xueqi Cheng (2013)
|
||||
@url{https://github.com/xiaohuiyan/xiaohuiyan.github.io/blob/master/paper/\
|
||||
BTM-WWW13.pdf}.")
|
||||
(license license:asl2.0)))
|
||||
|
|
Reference in New Issue